基于条件最小均方误差预测器的道口信号估计

Maciej Ordowski, M. Pawlak, D. Rzepka, M. Miśkowicz
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引用次数: 0

摘要

本文主要研究由一组离散时间测量数据以随机过程建模的信号的插值问题。研究信号采样过程作为随机过程在其离散时间观测瞬间的条件作用。分析表明,即使输入是由平稳高斯过程建模的,在采样时刻具有一组观测值的条件随机过程仍然是高斯的,但是非平稳的。利用多元正态分布的标准性质,推导出条件过程的均值,同时作为基于观测值表示的给定信息进行信号重构的最小均方误差(MMSE)预测量。结果表明,对于高斯信号,MMSE预测器是观测数据的线性函数。对于带宽有限的信号,条件MMSE预测器与Yen基于确定性方法导出的众所周知的MMSE重建相吻合。虽然该方法涵盖了任何测量方案,可能在时间上不均匀,但研究范围仅限于从其平交样本中插值信号。仿真结果验证了MMSE重建的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Signal Estimation from Level Crossings using Conditional Minimum Mean Square Error Predictor
This paper is focused on the interpolation of a signal modeled by a random process from a set of discrete-time measurements. The process of signal sampling is studied as a conditioning of a random process at instants of its discrete-time observations. The analysis shows that even if an input is modeled by a stationary Gaussian process, the conditional random process with a set of observations at sampling instants, is still Gaussian but non-stationary. By the adoption of standard properties of the multivariate normal distribution, we derive the mean of the conditional process, which is at the same time the minimum mean-square error (MMSE) predictor for signal reconstruction based on the given information represented by the observations. It is shown that for Gaussian signals, the MMSE predictor is a linear function of the observed data. For bandlimited signals, the conditional MMSE predictor coincides to the well-known MMSE reconstruction derived by Yen based on the deterministic approach. Although the approach covers any measurement scheme, possibly non-uniform in time, the study is narrowed down to the interpolation of the signal from its level-crossing samples. The accuracy of the MMSE reconstruction has been verified by simulations.
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